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Should you trust your experimental results?

Should you trust your experimental results?. Amer Diwan, Google Stephen M. Blackburn, ANU Matthias Hauswirth, U. Lugano Peter F. Sweeney, IBM Research Attendees of Evaluate '11 workshop. Why worry?. Experiment. Innovate. For scientific progress we need sound experiments.

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Should you trust your experimental results?

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  1. Should you trust your experimental results? Amer Diwan, Google Stephen M. Blackburn, ANU Matthias Hauswirth, U. Lugano Peter F. Sweeney, IBM Research Attendees of Evaluate '11 workshop

  2. Why worry? Experiment Innovate For scientific progress we need sound experiments

  3. Unsound experiments Bad Idea Unsound Experiment Make a bad idea look great!

  4. Unsound experiments Great Idea Unsound Experiment Make a great idea look bad!

  5. Thesis Sound experimentation is critical but requires • Creativity • Diligence As a community, we must • Learn how to design and conduct sound experiments • Reward sound experimentation

  6. A simple experiment Goal: To characterise the speedup of optimization O Experiment: Measure program P on unloaded machine M with/without O P P/O M T1 T2 Claim: O speeds up programs by 10%

  7. Why is this unsound? Scope of experiment << Scope of claim The relationship of the two scopes determines if an experiment is sound

  8. Sound experiments Sufficient for sound experiment: Scope of claim <= Scope of experiment Option 1: Reduce claim Option 2: Extend experiment What are the common causes of unsound experiments?

  9. The four fatal sins The deadly sins do not stand in the way of a PLDI acceptance: It is our pleasure to inform you that your paper titled "Envy of PLDI authors" was accepted to PLDI ... But the four fatal sins might!

  10. Sin 1: Ignorance Defn: Ignoring components necessary for Claim Claim: all computers Experiment: a particular computer

  11. Sin 1: Ignorance Defn: Ignoring components necessary for Claim Experiment: one benchmark Claim: full suite avora Ignorance systematically biases results

  12. Ignorance is not obvious! A is better than B I found just the opposite Have you had this conversation with a collaborator?

  13. Ignoring Linux environment variables [Mytkowicz et al., ASPLOS 2009] Todd's results My results Changing the environment can change the outcome of your experiment!

  14. Ignoring heap size Graph from [Blackburn et al., OOPSLA 2006] Changing heap size can change the outcome of your experiment! SS is worst! SS is best!

  15. Ignoring profiler bias [Mytkowicz et al., PLDI 2010] Different profilers can yield contradictory conclusions!

  16. Sin 2: Inappropriateness Defn: Using components irrelevant for Claim Experiment: Server applications Claim: Mobile performance

  17. Sin of inappropriateness Defn: Using components irrelevant for Claim Experiment: Compute benchmarks Claim: GC performance http://www.ivankuznetsov.com/ Inappropriateness produces unsupported claims

  18. Inappropriateness is not obvious! Has your optimization ever delivered a 10% improvement ...which never materialized in the "wild"?

  19. Inappropriate statistics [Georges and Eeckhout, 2007]: (SemiSpace is best by far) (SemiSpace is one of the best) Have you ever been fooled by a lucky outlier?

  20. Inappropriate data analysis A B 99pc: 450 99pc: 50 Mean: 45.0 Mean: 45.0 A single Google search = 100s of RPCs 99th percentile affects a majority of the requests! A mean is inappropriate if long-tail latency matters!

  21. Inappropriate data analysis Layered systems often use caches at each level: Cache Hit Cache Miss Mean Do you check the shape of your data before summarizing it?

  22. Inappropriate metric With extra nops Have you ever picked a metric that was not ends-based?

  23. Inappropriate metric Program Program Pointer analysis A Pointer analysis B Mean points-to-set = 2 Mean points-to-set = 2 Claim: B is simpler yet just as precise as A P Q R P Q R versus Have you ever used a metric that was inconsistent with "better"?

  24. Sin 3: Inconsistency Defn: Experiment compares A to B in different contexts

  25. Sin 3: Inconsistency Defn: Experiment compares A to B in different contexts Claim: B > A Experiment: They used P; We used Q Suite Q Suite P System B System A d D Inconsistency misleads!

  26. Inconsistency is not obvious Workload Workload Measurement Context Measurement Context System A System B Metrics Metrics Workload, context, and metrics must be the same

  27. Inconsistent workload I want to evaluate a new optimization for Gmail Optimization enabled Has the workload ever changed from under you?

  28. Inconsistent metric Issued instructions Retired instructions Do you (or even vendors) know what each hardware metric means?

  29. Sin 4: Irreproducibility Defn: Others cannot reproduce your experiment Report: Experiment: Workload Measurement Context System Metrics Irreproducibility makes it harder to identify unsound experiments

  30. Irreproducibility is not obvious Workload Measurement Context System Metrics Omitting any biases can make results irreproducible

  31. Revisiting the thesis The four fatal sins • affect all aspects of experiments • cannot be eliminated with a silver bullet • (even with a much longer history, other sciences have them too) It will take creativity and diligence to overcome these sins!

  32. But I can give you one tip Look your gift horse in the mouth!

  33. Back of the envelope • Your optimization eliminates memory loads • Can the count of eliminated loads explain speedup? • You blame "cache effects" for results you cannot explain... • Does the variation in cache misses explain results?

  34. Rewarding good experimentation Evaluates existing ideas; no new algorithms... Scope of a paper: Often rejected Loch Ness Monster Safe Bet Quality of experiments No evidence that the idea works... Reject Often rejected Novelty of algorithm Is this where we want to be?

  35. Novel ideas can stand on their own Novel (and carefully reasoned) ideas expose • New paths for exploration • New ways of thinking A groundbreaking idea and no evaluation >> A groundbreaking idea and misleading evaluation

  36. Insightful experiments can stand on their own! • An insightful experiment may • Give insight into leading alternatives • Opens up new investigations • Increase confidence in prior results or approaches An insightful evaluation and no algorithm >> An insightful evaluation and a lame algorithm

  37. But sound experiments take time! • But not as much as chasing a false lead for years... • How would you feel if you built a product • ...based on incorrect data? • Do you prefer to build upon:

  38. Why you should care (revisited) • Has your optimization ever yielded an improvement • ...even when you had not enabled it? • Have you ever obtained fantastic results • ...which even your collaborators could not reproduce? • Have you ever wasted time chasing a lead • ...only to realize your experiment was flawed? • Have you ever read a paper • ...and immediately decided to ignore the results?

  39. The end • Experiments are difficult and not just for us • Jonah Lehrer's "The truth wears off" • Other sciences have established methods • It is our turn to learn from them and establish ours! • Want to learn more? • The Evaluate collaboratory (http://evaluate.inf.usi.ch)

  40. Acknowledgements • Todd Mytkowicz • Evaluate 2011 attendees: José Nelson Amaral, Vlastimil Babka, Walter Binder, Tim Brecht, Lubomír Bulej, Lieven Eeckhout, Sebastian Fischmeister, Daniel Frampton, Robin Garner, Andy Georges, Laurie J. Hendren, Michael Hind, Antony L. Hosking, Richard E. Jones, Tomas Kalibera, Philippe Moret, Nathaniel Nystrom, Victor Pankratius, Petr Tuma • My mentors: Mike Hind, Kathryn McKinley, Eliot Moss

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